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Dynamic affinity-based classification of multi-class imbalanced data with one-versus-one decomposition: a fuzzy rough set approach

机译:基于动态亲和基于多级不平衡数据的分类,具有一对与一个分解:模糊粗糙集方法

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摘要

Class imbalance occurs when data elements are unevenly distributed among classes, which poses a challenge for classifiers. The core focus of the research community has been on binary-class imbalance, although there is a recent trend toward the general case of multi-class imbalanced data. The IFROWANN method, a classifier based on fuzzy rough set theory, stands out for its performance in two-class imbalanced problems. In this paper, we consider its extension to multi-class data by combining it with one-versus-one decomposition. The latter transforms a multi-class problem into two-class sub-problems. Binary classifiers are applied to these sub-problems, after which their outcomes are aggregated into one prediction. We enhance the integration of IFROWANN in the decomposition scheme in two steps. Firstly, we propose an adaptive weight setting for the binary classifier, addressing the varying characteristics of the sub-problems. We call this modified classifier IFROWANN-. Second, we develop a new dynamic aggregation method called WV-FROST that combines the predictions of the binary classifiers with the global class affinity before making a final decision. In a meticulous experimental study, we show that our complete proposal outperforms the state-of-the-art on a wide range of multi-class imbalanced datasets.
机译:当数据元素不均匀地分布在类之间时,会发生级别的不平衡,这对分类器构成了挑战。研究界的核心重点一直在二进制级别的不平衡,尽管最近有一个趋势迈向多级不平衡数据的概况。 IFRowann方法是一种基于模糊粗糙集理论的分类器,在两级不平衡问题中脱颖而出。在本文中,我们将其扩展到多级数据,通过将其与一个与一个分解组合来。后者将多级问题转化为两类子问题。二进制分类器应用于这些子问题,之后将其结果聚集成一个预测。我们在两个步骤中增强了IFRowann在分解方案中的集成。首先,我们向二进制分类提出了一种自适应权重设置,解决了子问题的变化特征。我们调用此修改的分类器Ifrowann-。其次,我们开发一种名为WV-FROST的新动态聚合方法,该方法将二进制分类器的预测与全局类亲和力相结合,然后在进行最终决定之前。在一丝细致的实验研究中,我们表明我们的完整提议在广泛的多级不平衡数据集中表现出最先进的。

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